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Seven Types of Artificial Intelligence Explained

Key Points

  • The speaker proposes classifying AI into seven types, grouped under two broad categories: AI capabilities and AI functionalities.
  • Among capabilities, only artificial narrow (or “weak”) AI exists today; it excels at specific tasks but cannot operate beyond its trained scope.
  • Artificial general intelligence (AGI or “strong” AI) is a theoretical future form that would autonomously apply prior knowledge to learn new tasks without human training.
  • Artificial super AI, also theoretical, would surpass human cognition, possessing its own emotions, beliefs, and desires.
  • Functionally, narrow AI includes reactive machine AI—systems like IBM’s Deep Blue that use statistical analysis to perform highly specialized, data‑driven tasks.

Full Transcript

# Seven Types of Artificial Intelligence Explained **Source:** [https://www.youtube.com/watch?v=XFZ-rQ8eeR8](https://www.youtube.com/watch?v=XFZ-rQ8eeR8) **Duration:** 00:06:49 ## Summary - The speaker proposes classifying AI into seven types, grouped under two broad categories: AI capabilities and AI functionalities. - Among capabilities, only artificial narrow (or “weak”) AI exists today; it excels at specific tasks but cannot operate beyond its trained scope. - Artificial general intelligence (AGI or “strong” AI) is a theoretical future form that would autonomously apply prior knowledge to learn new tasks without human training. - Artificial super AI, also theoretical, would surpass human cognition, possessing its own emotions, beliefs, and desires. - Functionally, narrow AI includes reactive machine AI—systems like IBM’s Deep Blue that use statistical analysis to perform highly specialized, data‑driven tasks. ## Sections - [00:00:00](https://www.youtube.com/watch?v=XFZ-rQ8eeR8&t=0s) **Classifying AI Capabilities Overview** - The speaker outlines a seven‑type AI taxonomy, distinguishing today’s narrow (weak) AI from theoretical general (strong) AI within a framework of capabilities and functionalities. - [00:03:11](https://www.youtube.com/watch?v=XFZ-rQ8eeR8&t=191s) **Types of Narrow AI** - The passage outlines narrow AI’s two core categories—reactive machine AI, exemplified by Deep Blue’s chess calculations, and limited‑memory AI, used in generative chatbots that predict text or visuals based on past data. ## Full Transcript
0:00I'm going to attempt to classify all of artificial  intelligence or AI into seven types. And that's 0:08a tall order. But these seven types of AI  can largely be understood by examining two 0:13encompassing categories. There's AI capabilities,  and there's AI functionalities. So let's start 0:21with AI capabilities, and there are three. The  first of which is known as artificial narrow AI, 0:33which also goes by the rather unflattering name of  "weak AI". Now, on its face, that doesn't sound like 0:42a very interesting capability to start us off.  But actually, narrow AI is the only type of AI 0:49that exists today--it's all we currently have. Any  other form of AI is theoretical. So we can think 0:57of this as realized AI--that's the artificial  intelligence we have today. And theoretical AI, 1:06which is the artificial intelligence we may have  in the future. And now narrow AI can be trained 1:12to perform a narrow task, which, to be fair  to narrow AI, might be something that a human 1:21could not do as well as the AI can. But it can't  perform outside of its defined task. It does need 1:28us humans still to train it. So if narrow AI  represents all AI capabilities we have today, 1:35well, what else is there? Well, a favorite of  memes, science fiction, and betting markets is 1:44artificial general intelligence, also known as  AGI. And also known as "strong AI". To be clear, 1:55AGI is currently nothing more than a theoretical  concept. But here's the idea: AGI can use previous 2:03learnings and skills to accomplish new tasks  in a different context, without the need for 2:09us human beings to train the underlying models.  If AGI wants to learn how to perform a new task, 2:17it will figure it out by itself. Which  sounds... disconcerting. But, but look, 2:23we haven't even talked about the third type of AI  capability yet. And that's artificial "super AI". If 2:34ever realized, super AI would think, reason,  learn, make judgments and possess cognitive 2:41abilities that surpass those of human beings.  The application's [possessing] super AI capabilities 2:49would have evolved beyond the point of catering  to humans sentiments and experiences, and would be 2:55able to feel emotions and have needs and possess  beliefs and desires of their own. Yeah. So let's 3:04park that cheery thought for now, and consider  the four types of AI based on functionalities. 3:11And we're back in the real world of realized  AI here--at least initially. So we can think 3:18of narrow AI as having two fundamental functions.  One of those is reactive machine AI. Now reactive 3:33machine AI are systems designed to perform a very  specific specialized task. Reactive AI stems from 3:42statistical math, and it can analyze vast amounts  of data to produce a seemingly intelligent output. 3:49We've had reactive AI for quite a long time. Back  in the late 1990s, IBM's chess playing supercomputer 3:58Deep Blue beat chess grandmaster Garry Kasparov by  analyzing the pieces on the board and predicting 4:04the probable outcomes of each move. That's a  specialized task with a lot of available data 4:10to create insights. The hallmark of reactive AI.  We can think of other narrow AI functionalities 4:19really as being classified as "limited memory  AI". Now this form of AI can recall past events 4:30and outcomes and monitor specific objects or  situations over time. It can use past and present 4:37moment data to decide on a course of action most  likely to help achieve a desired outcome. And as 4:44it's trained on more data over time, limited  memory AI can improve in performance. Think of 4:50your favorite generative AI chatbot, which relies  on limited memory AI capabilities to predict the 4:56next word or the next phrase or the next visual  element within the context it's generating. Okay, 5:03so what about our two theoretical AI capabilities?  Well, if we look at AGI, we have to think about 5:13"theory of mind AI". Now, this would understand  the thoughts and emotions of other entities, 5:24specifically us, so it could infer human motives  and reasoning and personalize its interactions 5:31with individuals based on their unique emotional  needs and intentions. And actually, emotion AI 5:38is a theory of mind AI currently in development.  AI researchers hope it will have the ability to 5:44analyze voices, images and other kinds of data  to understand and respond to human feelings. 5:53Finally! An AI that really understands me. And  then finally, under super AI, we have "self-aware 6:04AI". Winning my personal award for the scariest AI  of all, it would have the ability to understand 6:13its own internal conditions and traits, leading to  its own set of emotions, needs and beliefs. Look, 6:21we've covered seven types of AI, and only three  of them actually exist today! There is still so 6:28much to be learned and discovered. But as  those advancements happen, at least here we 6:34have a taxonomy of AI types that will tell  us how far along we are on our AI journey.